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Mapping Above-Ground Biomass in a Tropical Forest in Cambodia Using Canopy Textures Derived from Google Earth

机译:使用Google Earth的树冠纹理绘制柬埔寨热带森林中的地上生物量

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This study develops a modelling framework for utilizing very high-resolution (VHR) aerial imagery for monitoring stocks of above-ground biomass (AGB) in a tropical forest in Southeast Asia. Three different texture-based methods (grey level co-occurrence metric (GLCM), Gabor wavelets and Fourier-based textural ordination (FOTO)) were used in conjunction with two different machine learning (ML)-based regression techniques (support vector regression (SVR) and random forest (RF) regression). These methods were implemented on both 50-cm resolution Digital Globe data extracted from Google Earth™ (GE) and 8-cm commercially obtained VHR imagery. This study further examines the role of forest biophysical parameters, such as ground-measured canopy cover and vertical canopy height, in explaining AGB distribution. Three models were developed using: (i) horizontal canopy variables (i.e., canopy cover and texture variables) plus vertical canopy height; (ii) horizontal variables only; and (iii) texture variables only. AGB was variable across the site, ranging from 51.02 Mg/ha to 356.34 Mg/ha. GE-based AGB estimates were comparable to those derived from commercial aerial imagery. The findings demonstrate that novel use of this array of texture-based techniques with GE imagery can help promote the wider use of freely available imagery for low-cost, fine-resolution monitoring of forests parameters at the landscape scale.
机译:这项研究开发了一个建模框架,可利用超高分辨率(VHR)航空影像监测东南亚热带森林中地上生物量(AGB)的存量。结合两种不同的基于机器学习(ML)的回归技术(支持向量回归(支持向量回归()),使用了三种不同的基于纹理的方法(灰度共现度量(GLCM),Gabor小波和基于傅立叶的纹理排序(FOTO)) SVR)和随机森林(RF)回归)。这些方法都适用于从Google Earth™(GE)提取的50厘米分辨率Digital Globe数据和8厘米市售VHR图像。这项研究进一步检验了森林生物物理参数(例如地面测量的冠层覆盖度和垂直冠层高度)在解释AGB分布中的作用。使用以下三个模型来开发:(i)水平冠层变量(即冠层覆盖和纹理变量)加上垂直冠层高度; (ii)仅水平变量; (iii)仅纹理变量。整个站点的AGB变化范围从51.02 Mg / ha到356.34 Mg / ha。基于GE的AGB估算值可与从商业航空影像中得出的估算值相媲美。研究结果表明,将这种基于纹理的技术与GE影像结合使用可以帮助促进免费使用影像的广泛使用,以便在景观规模上以低成本,高分辨率监视森林参数。

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